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Source Apportionment of Annual Water Pollution Loads in River Basins by Remote-Sensed Land Cover Classification

机译:基于遥感土地覆被分类的流域年度水污染负荷源分配

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In this study, in order to determine the efficiency of estimating annual water pollution loads from remote-sensed land cover classification and ground-observed hydrological data, an empirical model was investigated. Remote sensing data imagery from National Oceanic and Atmospheric Administration (NOAA) Advanced Very High Resolution Radiometer were applied to an 11 year (1994–2004) water quality dataset for 30 different rivers in Japan. Six water quality indicators—total nitrogen (TN), total phosphorus (TP), biochemical oxygen demand (BOD), chemical oxygen demand (COD), and dissolved oxygen (DO)—were examined by using the observed river water quality data and generated land cover map. The TN, TP, BOD, COD, and DO loads were estimated for the 30 river basins using the empirical model. Calibration (1994–1999) and validation (2000–2004) results showed that the proposed simulation technique was useful for predicting water pollution loads in the river basins. We found that vegetation land cover had a larger impact on TP export into all rivers. Urban areas had a very small impact on DO export into rivers, but a relatively large impact on BOD and TN export. The results indicate that the application of land cover data generated from the remote-sensed imagery could give a useful interpretation about the river water quality.
机译:在这项研究中,为了确定从遥感土地覆被分类和地面水文数据估算每年水污染负荷的效率,研究了一个经验模型。来自国家海洋与大气管理局(NOAA)的超高分辨率高分辨率辐射计的遥感数据图像应用于日本30条不同河流的11年(1994-2004年)水质数据集。使用观测到的河流水质数据检查了六个水质指标,即总氮(TN),总磷(TP),生化需氧量(BOD),化学需氧量(COD)和溶解氧(DO),并生成了土地覆盖图。使用经验模型估算了30个流域的TN,TP,BOD,COD和DO负荷。校准(1994–1999)和验证(2000–2004)结果表明,所提出的模拟技术可用于预测流域的水污染负荷。我们发现植被的土地覆盖对TP排放到所有河流的影响更大。城市地区对溶解氧向河流的出口影响很小,但对生化需氧量和总氮的出口影响较大。结果表明,利用遥感影像生成的土地覆盖数据可以对河流水质进行有益的解释。

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